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Integrating new data balancing technique with committee networks for imbalanced data: GRSOM approach

机译:将新的数据平衡技术与委员会网络集成以处理不平衡数据:GRSOM方法

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摘要

To deal with imbalanced data in a classification problem, this paper proposes a data balancing technique to be used in conjunction with a committee network. The proposed data balancing technique is based on the concept of the growing ring self-organizing map (GRSOM) which is an unsupervised learning algorithm. GRSOM balances the data through growing new data on a well-defined ring structure, which is iteratively developed based on the winning node nearby the samples. Accordingly, the new balanced data still preserve the topology of the original data. The performance of our proposed method is evaluated using four real data sets from the UCI Machine Learning Repository and the classification performance is measured using the fivefold cross validation method. Classifiers with most common data balancing techniques, namely the Minority Over-Sampling Technique (SMOTE) and the Random under-sampling Technique (RT), are used as the baseline methods in this study. The results reveal that a committee of classifiers constructed using GRSOM performs at least as well as the baseline methods. The results also suggest that classifiers constructed using neural networks with the backpropagation algorithm are more robust than those using the support vector machine.
机译:为了处理分类问题中的不平衡数据,本文提出了一种与委员会网络结合使用的数据平衡技术。提出的数据平衡技术基于增长环自组织映射(GRSOM)的概念,该环是一种无监督的学习算法。 GRSOM通过在定义明确的环结构上生长新数据来平衡数据,该环结构是根据样本附近的获胜节点迭代开发的。因此,新的平衡数据仍保留原始数据的拓扑。我们使用UCI机器学习存储库中的四个真实数据集评估了我们提出的方法的性能,并使用五重交叉验证方法测量了分类性能。具有最常见数据平衡技术的分类器,即少数族裔过采样技术(SMOTE)和随机欠采样技术(RT),被用作本研究的基线方法。结果表明,使用GRSOM构造的分类器委员会至少执行了基线方法。结果还表明,使用神经网络和反向传播算法构造的分类器比使用支持向量机的分类器更健壮。

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